Feb. 13, 2024, 5:45 a.m. | Haochong Xia Shuo Sun Xinrun Wang Bo An

cs.LG updates on arXiv.org arxiv.org

Financial simulators play an important role in enhancing forecasting accuracy, managing risks, and fostering strategic financial decision-making. Despite the development of financial market simulation methodologies, existing frameworks often struggle with adapting to specialized simulation context. We pinpoint the challenges as i) current financial datasets do not contain context labels; ii) current techniques are not designed to generate financial data with context as control, which demands greater precision compared to other modalities; iii) the inherent difficulties in generating context-aligned, high-fidelity data …

accuracy challenges context control cs.lg current data datasets decision development financial financial market forecasting frameworks gan labels making market data q-fin.tr risks role semantic simulation struggle

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